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A JPEG image blind steganography detection method using KCCA feature fusion

机译:利用KCCA特征融合的JPEG图像盲密写检测方法

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摘要

Feature fusion can effectively improve the steganographic detection capability, but the previous researches of feature fusion in JPEG image steganography detection rarely considered the nonlinear correlation of features. This paper analyzes the correlation of JPEG image steganographic features and fuses features with lowest correlation to obtain better detection capability based on KCCA (Kernel canonical correlation analysis), which has a good ability of nonlinear correlation analysis and can eliminate the redundancy of information between features. Firstly, analyze the "DCT extended feature" and the "markov reduced feature" which are classic features, and the newly proposed "DCT adaptive feature" in 2011. Secondly, select two features with lowest correlation among them for KCCA feature fusion. Finally, carry out experimental contrasts with other related methods. The experimental results show that the proposed method is reasonable and effective.
机译:特征融合可以有效地提高隐写检测能力,但是现有的JPEG图像隐写检测中的特征融合研究很少考虑特征的非线性相关性。本文分析了JPEG图像隐写特征的相关性,并融合了相关性最低的特征,以基于KCCA(核规范相关分析)获得更好的检测能力,具有良好的非线性相关性分析能力,可以消除特征之间信息的冗余。首先,分析经典特征“ DCT扩展特征”和“马尔可夫约简特征”,以及2011年新提出的“ DCT自适应特征”。其次,选择其中两个相关性最低的特征进行KCCA特征融合。最后,与其他相关方法进行实验对比。实验结果表明,该方法是合理有效的。

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